Kinase fusion-related thyroid carcinomas: Distinct pathologic entities with evolving diagnostic implications Review


Authors: Chu, Y. H.; Sadow, P. M.
Review Title: Kinase fusion-related thyroid carcinomas: Distinct pathologic entities with evolving diagnostic implications
Abstract: Activating genomic alterations in protein kinases represent a major driving force in thyroid carcinogenesis. Recently, oncogenic kinase fusions have been a central subject of pharmaceutical development, with a rapidly growing number of inhibitors validated for treating molecularly matched malignancies. Thyroid carcinomas harbor actionable kinase fusions in 10–15% of cases, occupying an increasingly recognized subpopulation of thyroid carcinomas with enhanced attention to molecular profiling. With advances in kinase-based cancer therapy, several challenges have emerged for pathologists. To interrogate an expanding list of targetable genes, the diagnostic paradigm has shifted from conventional single-gene methods toward high-throughput nucleic acid sequencing. Considering the relatively low incidence of most kinase fusions, a selective approach for molecular testing that utilizes histologic and immunohistochemical findings in triaging cases becomes essential for laboratory resource management. Moreover, kinase inhibitor resistance inevitably evolves, requiring a multimodal approach to optimal therapy, despite targeted therapies showing an enhanced, durable response. In this review, we assess the current clinicopathologic understanding and ongoing investigational topics in kinase fusion-related thyroid carcinomas. © 2021
Keywords: thyroid carcinoma; fusion; kinase; kinase inhibitor
Journal Title: Diagnostic Histopathology
Volume: 27
Issue: 6
ISSN: 1756-2317
Publisher: Elsevier Inc.  
Date Published: 2021-06-01
Start Page: 252
End Page: 262
Language: English
DOI: 10.1016/j.mpdhp.2021.03.003
PROVIDER: scopus
PMCID: PMC8412027
PUBMED: 34484420
DOI/URL:
Notes: Review -- Export Date: 1 July 2021 -- Source: Scopus
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  1. Ying-Hsia Chu
    6 Chu